A network of transcriptomic signatures identifies novel comorbidity mechanisms between schizophrenia and somatic disorders.

Youcheng Zhang, Vinay S Bharadhwaj, Alpha T Kodamullil, Carl Herrmann
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Abstract

The clinical burden of mental illness, in particular schizophrenia and bipolar disorder, are driven by frequent chronic courses and increased mortality, as well as the risk for comorbid conditions such as cardiovascular disease and type 2 diabetes. Evidence suggests an overlap of molecular pathways between psychotic disorders and somatic comorbidities. In this study, we developed a computational framework to perform comorbidity modeling via an improved integrative unsupervised machine learning approach based on multi-rank non-negative matrix factorization (mrNMF). Using this procedure, we extracted molecular signatures potentially explaining shared comorbidity mechanisms. For this, 27 case-control microarray transcriptomic datasets across multiple tissues were collected, covering three main categories of conditions including psychotic disorders, cardiovascular diseases and type II diabetes. We addressed the limitation of normal NMF for parameter selection by introducing multi-rank ensembled NMF to identify signatures under various hierarchical levels simultaneously. Analysis of comorbidity signature pairs was performed to identify several potential mechanisms involving activation of inflammatory response auxiliarily interconnecting angiogenesis, oxidative response and GABAergic neuro-action. Overall, we proposed a general cross-cohorts computing workflow for investigating the comorbid pattern across multiple symptoms, applied it to the real-data comorbidity study on schizophrenia, and further discussed the potential for future application of the approach.

转录组特征网络确定了精神分裂症与躯体疾病之间的新型合并机制。
精神疾病,尤其是精神分裂症和双相情感障碍,会导致频繁的慢性病程和死亡率上升,以及心血管疾病和 2 型糖尿病等并发症的风险,从而给临床带来沉重负担。有证据表明,精神障碍和躯体合并症之间存在分子通路的重叠。在这项研究中,我们开发了一个计算框架,通过基于多秩非负矩阵因式分解(mrNMF)的改进型综合无监督机器学习方法来进行合并症建模。利用这一方法,我们提取了可能解释共同合并症机制的分子特征。为此,我们收集了 27 个病例对照微阵列转录组数据集,涉及多个组织,涵盖三大类疾病,包括精神障碍、心血管疾病和 II 型糖尿病。针对普通 NMF 在参数选择方面的局限性,我们引入了多秩集合 NMF,以同时识别不同层次下的特征。我们对合并症特征对进行了分析,以确定涉及激活炎症反应的几种潜在机制,这些炎症反应与血管生成、氧化反应和 GABA 能神经作用相互关联。总之,我们提出了一种通用的跨队列计算工作流程,用于研究多种症状的共病模式,并将其应用于精神分裂症的真实数据共病研究,还进一步讨论了该方法未来的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.90
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